5 repositorios
Collections of benchmark-ready data for scientific validation and training.
Distinguishing note: Focuses on research-grade data access rather than general database management.
Explore 5 awesome GitHub repositories matching data & databases · Research Datasets. Refine with filters or upvote what's useful.
This repository serves as a comprehensive research platform and toolkit for advancing machine learning, quantum computing, and large-scale scientific data analysis. It provides foundational frameworks for developing complex algorithmic systems, offering the necessary infrastructure for distributed training, computational graph execution, and high-performance model development. The project distinguishes itself by integrating specialized research domains with robust, privacy-preserving methodologies. It supports diverse scientific discovery through tools for quantum simulation, physics-informed
Provides frameworks and templates to improve transparency and accountability in dataset creation.
This project is a curated archive and cybersecurity research dataset of raw source code from various malware families. It serves as a malware analysis library designed to help researchers study the inner workings of different threats and identify attack patterns across multiple platforms and programming languages. The repository supports security research by providing raw text distribution of original source code. This allows for the study of platform vulnerabilities, threat intelligence gathering, and the development of security products and detection signatures. The collection is organized
Provides a comprehensive collection of malicious code samples across multiple platforms for studying attack patterns.
This project is an AI research implementation library and machine learning research repository. It provides a collection of reference code, illustrative implementations, and open-source research datasets used to verify hypotheses and build upon existing models in artificial intelligence. The repository focuses on scientific research reproduction by translating theoretical findings from published papers into executable code. It includes specialized scientific simulation environments designed to test the behavior of autonomous agents and models within controlled settings. The project covers AI
Provides benchmark-ready scientific datasets for validating model performance against research baselines.
This project is a research data sharing framework and provenance protocol designed to ensure computational reproducibility. It provides a standardized set of guidelines for transforming raw source data into tidy formats through documented processing scripts and cleaning workflows. The framework distinguishes itself by emphasizing a strict provenance-based packaging system. It requires the organization of raw data, processing recipes, and code books into a single package, ensuring that original unmodified sources are preserved to allow for independent verification of all transformation steps.
Provides frameworks and templates for creating detailed code books and reference files to ensure research transparency.
This project is a music information retrieval library and research dataset designed for audio feature extraction and music genre classification. It provides a framework for training and evaluating machine learning models that categorize audio tracks into hierarchical genre structures, supported by a collection of open-licensed MP3 tracks and pre-computed features. The project includes a music metadata API client to fetch structured track, album, and artist information from external data sources. It utilizes these external integrations to map parent-child relationships between genres and organ
Facilitates the retrieval of large collections of MP3 tracks paired with metadata and genre hierarchies for validation.